Zhen Xin, Chen Haibin, Yan Hao, Zhou Linghong, Mell Loren K, Yashar Catheryn M, Jiang Steve, Jia Xun, Gu Xuejun, Cervino Laura
Department of Biomedical Engineering, Southern Medical University, Guangzhou, Guangdong 510515, People's Republic of China.
Phys Med Biol. 2015 Apr 7;60(7):2981-3002. doi: 10.1088/0031-9155/60/7/2981. Epub 2015 Mar 19.
Deformable image registration (DIR) of fractional high-dose-rate (HDR) CT images is challenging due to the presence of applicators in the brachytherapy image. Point-to-point correspondence fails because of the undesired deformation vector fields (DVF) propagated from the applicator region (AR) to the surrounding tissues, which can potentially introduce significant DIR errors in dose mapping. This paper proposes a novel segmentation and point-matching enhanced efficient DIR (named SPEED) scheme to facilitate dose accumulation among HDR treatment fractions. In SPEED, a semi-automatic seed point generation approach is developed to obtain the incremented fore/background point sets to feed the random walks algorithm, which is used to segment and remove the AR, leaving empty AR cavities in the HDR CT images. A feature-based 'thin-plate-spline robust point matching' algorithm is then employed for AR cavity surface points matching. With the resulting mapping, a DVF defining on each voxel is estimated by B-spline approximation, which serves as the initial DVF for the subsequent Demons-based DIR between the AR-free HDR CT images. The calculated DVF via Demons combined with the initial one serve as the final DVF to map doses between HDR fractions. The segmentation and registration accuracy are quantitatively assessed by nine clinical HDR cases from three gynecological cancer patients. The quantitative analysis and visual inspection of the DIR results indicate that SPEED can suppress the impact of applicator on DIR, and accurately register HDR CT images as well as deform and add interfractional HDR doses.
由于近距离放射治疗图像中存在施源器,分数高剂量率(HDR)CT图像的可变形图像配准(DIR)具有挑战性。由于从施源器区域(AR)传播到周围组织的不期望的变形矢量场(DVF),点对点对应失败,这可能在剂量映射中引入显著的DIR误差。本文提出了一种新颖的分割和点匹配增强高效DIR(命名为SPEED)方案,以促进HDR治疗分次之间的剂量累积。在SPEED中,开发了一种半自动种子点生成方法,以获得递增的前景/背景点集,用于输入随机游走算法,该算法用于分割和去除AR,在HDR CT图像中留下空的AR腔。然后采用基于特征的“薄板样条鲁棒点匹配”算法进行AR腔表面点匹配。利用得到的映射,通过B样条逼近估计每个体素上定义的DVF,其作为后续无AR的HDR CT图像之间基于Demons的DIR的初始DVF。通过Demons计算得到的DVF与初始DVF相结合,作为最终的DVF用于在HDR分次之间映射剂量。通过对三名妇科癌症患者的九个临床HDR病例进行定量评估分割和配准精度。DIR结果的定量分析和视觉检查表明,SPEED可以抑制施源器对DIR的影响,并准确配准HDR CT图像以及变形和添加分次间HDR剂量。